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http://localhost:8081/jspui/handle/123456789/20088| Title: | COMPUTATIONAL ALGORITHMS FOR RECONSTRUCTION OF CROSSINGWHITE MATTER FIBERS IN BRAIN |
| Authors: | Puri, Ashishi |
| Issue Date: | Oct-2023 |
| Publisher: | IIT Roorkee |
| Abstract: | Magneticresonanceimaging(MRI)isanon-invasiveimagingtechniqueusedto visualizehumantissues.Diffusiontensorimaging(DTI)isaspecificMRImethodfor visualizingbrainwhitemattertracts.However,DTIhaslimitationsindetectingmulti- ple fiberorientations.Toaddressthis,mixturemodelslikethemixtureofGaussiandis- tribution(MoG),mixtureofcentralWishartdistribution(MoCW),andmixtureofnon- centralWishartdistribution(MoNCW)havebeenintroduced.Thesemodelsenable thevoxel-wisemulti-compartmentalization,dividingeachvoxelintomultiplecom- partmentstoaccountforcomplexdiffusionpatternsinthebrain.Toaddresstheun- certaintyinfiberorientations,auniformgradientdirections(UGDs)samplingscheme is used,distributingafixednumberofgradientdirectionsuniformlyonaunitsphere. Thisapproachensuresunbiasedestimationoffiberorientationswithineachvoxel. A largevalueofthesegradientdirectionsisemployedforbetterfiberreconstruction. However,evenwithalargenumberofgradientdirections,accuratelydistinguishing closelyorientedcrossingfiberswithsmallseparationanglesremainschallengingand computationallyintensive,potentiallyleadingtolongercomputationtime.Themain goal ofthisthesisistodevelopcomputationalalgorithmsforaccuratelyreconstruct- ing crossingwhitematterfibershavingsmallseparationangles.Thisiscrucialbecause differentorganizationandarrangementofWMFscanprovideinsightsintobraincon- ditions associatedwithneurologicalabnormalities,psychiatricdisorders,anddevel- opmentalissues. Thethesisintroducesanoveltechniquecalledadaptivegradientdirections(AGDs) for improvingthereconstructionofsingleandcrossingfibers.TheAGDapproachin- volvesatwo-stepalgorithm:usingasmallnumberofuniformlydistributedgradient directionstoaccountforroughfiberorientationinthefirststep,andgeneratingnew gradientdirectionsinproximitytotheobtainedorientationinthesecondstepinagrid likepattern.Aniterativeapproachisalsointroducedforgradientdirectiongeneration. Bothapproachesenhancereconstructionresultsandreduceangularerror. |
| URI: | http://localhost:8081/jspui/handle/123456789/20088 |
| Research Supervisor/ Guide: | Kumar, Sanjeev |
| metadata.dc.type: | Thesis |
| Appears in Collections: | DOCTORAL THESES (Maths) |
Files in This Item:
| File | Description | Size | Format | |
|---|---|---|---|---|
| 2023_ASHISHI PURI.pdf | 14.69 MB | Adobe PDF | View/Open |
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